In most classification tasks, wide and deep neural networks perform and generalize better than their smaller counterparts, in particular when they are exposed to large and heterogeneous training sets. However, in the emerging field of Internet of Things memory footprint and energy budget pose severe limits on the size and complexity of the neural models that can be implemented on embedded devices. The Student-Teacher approach is an attractive strategy to distill knowledge from a large network into smaller ones, that can fit on low-energy low-complexity embedded IoT platforms. In this paper, we consider the outdoor sound event detection task as a use case. Building upon the VGGish network, we investigate different distillation strategies to ...
Everyday environments are overflowed with a wide variety of acoustic events, either produced by huma...
Continuous audio analysis from embedded and mobile devices is an increasingly important application ...
This project aims to design an algorithm for classifying voice commands for smart sensor devices, al...
In most classification tasks, wide and deep neural networks perform and generalize better than their...
In most classification tasks, wide and deep neural networks perform and generalize better than their...
Outdoor acoustic event detection is an exciting research field but challenged by the need for comple...
Sound Event Detection (SED) is a complex task simulating human ability to recognize what is happenin...
Sound event detection (SED) is a hot topic in consumer and smart city applications. Existing approac...
This project is based upon two previous projects handed to the author by the Norwegian University of...
Sound Event Detection (SED) pipelines identify and classify relevant events in audio streams. With t...
In the context of the Internet of Things (IoT), sound sensing applications are required to run on em...
The Internet of Things is one of the most promising fields of technological advancements. Through ne...
Sound classification usually requires heavy resources in terms of computation, memory, and energy to...
Neuroevolution techniques combine genetic algorithms with artificial neural networks, some of them e...
Noise is a growing problem in urban areas, and according to the WHO is the second environmental caus...
Everyday environments are overflowed with a wide variety of acoustic events, either produced by huma...
Continuous audio analysis from embedded and mobile devices is an increasingly important application ...
This project aims to design an algorithm for classifying voice commands for smart sensor devices, al...
In most classification tasks, wide and deep neural networks perform and generalize better than their...
In most classification tasks, wide and deep neural networks perform and generalize better than their...
Outdoor acoustic event detection is an exciting research field but challenged by the need for comple...
Sound Event Detection (SED) is a complex task simulating human ability to recognize what is happenin...
Sound event detection (SED) is a hot topic in consumer and smart city applications. Existing approac...
This project is based upon two previous projects handed to the author by the Norwegian University of...
Sound Event Detection (SED) pipelines identify and classify relevant events in audio streams. With t...
In the context of the Internet of Things (IoT), sound sensing applications are required to run on em...
The Internet of Things is one of the most promising fields of technological advancements. Through ne...
Sound classification usually requires heavy resources in terms of computation, memory, and energy to...
Neuroevolution techniques combine genetic algorithms with artificial neural networks, some of them e...
Noise is a growing problem in urban areas, and according to the WHO is the second environmental caus...
Everyday environments are overflowed with a wide variety of acoustic events, either produced by huma...
Continuous audio analysis from embedded and mobile devices is an increasingly important application ...
This project aims to design an algorithm for classifying voice commands for smart sensor devices, al...